CVJul 25, 2017

Automatic Image Transformation for Inducing Affect

arXiv:1707.08148v31 citations
Originality Incremental advance
AI Analysis

This addresses the need for emotion-based image manipulation in photography and design, though it is incremental as it builds on existing color-transfer methods.

The authors tackled the problem of automatically transforming images to induce specific emotional affects without requiring a user-specified target image, achieving effectiveness as demonstrated in a user study.

Current image transformation and recoloring algorithms try to introduce artistic effects in the photographed images, based on user input of target image(s) or selection of pre-designed filters. These manipulations, although intended to enhance the impact of an image on the viewer, do not include the option of image transformation by specifying the affect information. In this paper we present an automatic image-transformation method that transforms the source image such that it can induce an emotional affect on the viewer, as desired by the user. Our proposed novel image emotion transfer algorithm does not require a user-specified target image. The proposed algorithm uses features extracted from top layers of deep convolutional neural network and the user-specified emotion distribution to select multiple target images from an image database for color transformation, such that the resultant image has desired emotional impact. Our method can handle more diverse set of photographs than the previous methods. We conducted a detailed user study showing the effectiveness of our proposed method. A discussion and reasoning of failure cases has also been provided, indicating inherent limitation of color-transfer based methods in the use of emotion assignment. Project Page: http://im.itu.edu.pk/affective-image-transfer/

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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